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The graph tessellation cover number: extremal bounds, efficient algorithms and hardness

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 نشر من قبل Renato Portugal
 تاريخ النشر 2017
  مجال البحث الهندسة المعلوماتية
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A tessellation of a graph is a partition of its vertices into vertex disjoint cliques. A tessellation cover of a graph is a set of tessellations that covers all of its edges. The $t$-tessellability problem aims to decide whether there is a tessellation cover of the graph with $t$ tessellations. This problem is motivated by its applications to quantum walk models, in especial, the evolution operator of the staggered model is obtained from a graph tessellation cover. We establish upper bounds on the tessellation cover number given by the minimum between the chromatic index of the graph and the chromatic number of its clique graph and we show graph classes for which these bounds are tight. We prove $mathcal{NP}$-completeness for $t$-tessellability if the instance is restricted to planar graphs, chordal (2,1)-graphs, (1,2)-graphs, diamond-free graphs with diameter five, or for any fixed $t$ at least 3. On the other hand, we improve the complexity for 2-tessellability to a linear-time algorithm.



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